End-to-End Blind Image Quality Assessment with Cascaded Deep Features

2019 
The convolutional neural network (CNN) has achieved great success in many visual tasks. However, it has limited progress on image quality assessment (IQA) due to the lacking of IQA-oriented CNN framework which can efficiently represent the hierarchical quality degradation. In this paper, inspired by the hierarchical perception mechanism (from local structure to global semantics) in the human visual system, we design an end-to-end cascaded CNN framework for blind IQA (BIQA), in which multilevel features are extracted and concatenated to represent the hierarchical quality degradation. By jointly optimizing the feature extraction, hierarchical degradation integration, and quality prediction in an end-to-end manner, the novel cascaded CNN with hierarchical feature integration (CaHFI) for BIQA is designed. Experimental results on five benchmark IQA databases demonstrate that the proposed CaHFI achieves the state-of-the-art. And experiments on cross-database evaluation further prove the high generalization ability of the proposed CaHFI.
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